import os, glob import gradio as gr from PIL import Image from typing import List import modules.scripts as scripts from modules.upscaler import Upscaler, UpscalerData from modules import scripts, shared, images, scripts_postprocessing from modules.processing import ( Processed, StableDiffusionProcessing, StableDiffusionProcessingImg2Img, ) from modules.face_restoration import FaceRestoration from modules.images import save_image try: from modules.paths_internal import models_path except: try: from modules.paths import models_path except: model_path = os.path.abspath("models") from scripts.reactor_logger import logger from scripts.reactor_swapper import EnhancementOptions, swap_face, check_process_halt, reset_messaged from scripts.reactor_version import version_flag, app_title from scripts.console_log_patch import apply_logging_patch from scripts.reactor_helpers import make_grid, get_image_path MODELS_PATH = None def get_models(): global MODELS_PATH models_path_init = os.path.join(models_path, "insightface/*") models = glob.glob(models_path_init) models = [x for x in models if x.endswith(".onnx") or x.endswith(".pth")] models_names = [] for model in models: model_path = os.path.split(model) if MODELS_PATH is None: MODELS_PATH = model_path[0] model_name = model_path[1] models_names.append(model_name) return models_names class FaceSwapScript(scripts.Script): def title(self): return f"{app_title}" def show(self, is_img2img): return scripts.AlwaysVisible def ui(self, is_img2img): with gr.Accordion(f"{app_title}", open=False): with gr.Tab("Main"): with gr.Column(): img = gr.Image(type="pil") enable = gr.Checkbox(False, label="Enable", info=f"The Fast and Simple FaceSwap Extension - {version_flag}") save_original = gr.Checkbox(False, label="Save Original", info="Save the original image(s) made before swapping; If you use \"img2img\" - this option will affect with \"Swap in generated\" only") gr.Markdown("
") gr.Markdown("Source Image (above):") with gr.Row(): source_faces_index = gr.Textbox( value="0", placeholder="Which face(s) to use as Source (comma separated)", label="Comma separated face number(s); Example: 0,2,1", ) gender_source = gr.Radio( ["No", "Female Only", "Male Only"], value="No", label="Gender Detection (Source)", type="index", ) gr.Markdown("
") gr.Markdown("Target Image (result):") with gr.Row(): faces_index = gr.Textbox( value="0", placeholder="Which face(s) to Swap into Target (comma separated)", label="Comma separated face number(s); Example: 1,0,2", ) gender_target = gr.Radio( ["No", "Female Only", "Male Only"], value="No", label="Gender Detection (Target)", type="index", ) gr.Markdown("
") with gr.Row(): face_restorer_name = gr.Radio( label="Restore Face", choices=["None"] + [x.name() for x in shared.face_restorers], value=shared.face_restorers[0].name(), type="value", ) with gr.Column(): face_restorer_visibility = gr.Slider( 0, 1, 1, step=0.1, label="Restore Face Visibility" ) codeformer_weight = gr.Slider( 0, 1, 0.5, step=0.1, label="CodeFormer Weight", info="0 = maximum effect, 1 = minimum effect" ) gr.Markdown("
") swap_in_source = gr.Checkbox( False, label="Swap in source image", visible=is_img2img, ) swap_in_generated = gr.Checkbox( True, label="Swap in generated image", visible=is_img2img, ) with gr.Tab("Upscale"): restore_first = gr.Checkbox( True, label="1. Restore Face -> 2. Upscale (-Uncheck- if you want vice versa)", info="Postprocessing Order" ) upscaler_name = gr.Dropdown( choices=[upscaler.name for upscaler in shared.sd_upscalers], label="Upscaler", value="None", info="Won't scale if you choose -Swap in Source- via img2img, only 1x-postprocessing will affect (texturing, denoising, restyling etc.)" ) gr.Markdown("
") with gr.Row(): upscaler_scale = gr.Slider(1, 8, 1, step=0.1, label="Scale by") upscaler_visibility = gr.Slider( 0, 1, 1, step=0.1, label="Upscaler Visibility (if scale = 1)" ) with gr.Tab("Settings"): models = get_models() with gr.Row(): if len(models) == 0: logger.warning( "You should at least have one model in models directory, please read the doc here : https://github.com/Gourieff/sd-webui-reactor/" ) model = gr.Dropdown( choices=models, label="Model not found, please download one and reload WebUI", ) else: model = gr.Dropdown( choices=models, label="Model", value=models[0] ) console_logging_level = gr.Radio( ["No log", "Minimum", "Default"], value="Minimum", label="Console Log Level", type="index", ) return [ img, enable, source_faces_index, faces_index, model, face_restorer_name, face_restorer_visibility, restore_first, upscaler_name, upscaler_scale, upscaler_visibility, swap_in_source, swap_in_generated, console_logging_level, gender_source, gender_target, save_original, codeformer_weight, ] @property def upscaler(self) -> UpscalerData: for upscaler in shared.sd_upscalers: if upscaler.name == self.upscaler_name: return upscaler return None @property def face_restorer(self) -> FaceRestoration: for face_restorer in shared.face_restorers: if face_restorer.name() == self.face_restorer_name: return face_restorer return None @property def enhancement_options(self) -> EnhancementOptions: return EnhancementOptions( do_restore_first = self.restore_first, scale=self.upscaler_scale, upscaler=self.upscaler, face_restorer=self.face_restorer, upscale_visibility=self.upscaler_visibility, restorer_visibility=self.face_restorer_visibility, codeformer_weight=self.codeformer_weight, ) def process( self, p: StableDiffusionProcessing, img, enable, source_faces_index, faces_index, model, face_restorer_name, face_restorer_visibility, restore_first, upscaler_name, upscaler_scale, upscaler_visibility, swap_in_source, swap_in_generated, console_logging_level, gender_source, gender_target, save_original, codeformer_weight, ): self.enable = enable if self.enable: reset_messaged() if check_process_halt(): return global MODELS_PATH self.source = img self.face_restorer_name = face_restorer_name self.upscaler_scale = upscaler_scale self.upscaler_visibility = upscaler_visibility self.face_restorer_visibility = face_restorer_visibility self.restore_first = restore_first self.upscaler_name = upscaler_name self.swap_in_generated = swap_in_generated self.model = os.path.join(MODELS_PATH,model) self.console_logging_level = console_logging_level self.gender_source = gender_source self.gender_target = gender_target self.save_original = save_original self.codeformer_weight = codeformer_weight if self.gender_source is None or self.gender_source == "No": self.gender_source = 0 if self.gender_target is None or self.gender_target == "No": self.gender_target = 0 self.source_faces_index = [ int(x) for x in source_faces_index.strip(",").split(",") if x.isnumeric() ] self.faces_index = [ int(x) for x in faces_index.strip(",").split(",") if x.isnumeric() ] if len(self.source_faces_index) == 0: self.source_faces_index = [0] if len(self.faces_index) == 0: self.faces_index = [0] if self.save_original is None: self.save_original = False if self.source is not None: apply_logging_patch(console_logging_level) if isinstance(p, StableDiffusionProcessingImg2Img) and swap_in_source: logger.info("Working: source face index %s, target face index %s", self.source_faces_index, self.faces_index) for i in range(len(p.init_images)): if len(p.init_images) > 1: logger.info("Swap in %s", i) result, output, swapped = swap_face( self.source, p.init_images[i], source_faces_index=self.source_faces_index, faces_index=self.faces_index, model=self.model, enhancement_options=self.enhancement_options, gender_source=self.gender_source, gender_target=self.gender_target, ) p.init_images[i] = result # result_path = get_image_path(p.init_images[i], p.outpath_samples, "", p.all_seeds[i], p.all_prompts[i], "txt", p=p, suffix="-swapped") # if len(output) != 0: # with open(result_path, 'w', encoding="utf8") as f: # f.writelines(output) if shared.state.interrupted or shared.state.skipped: return else: logger.error("Please provide a source face") def postprocess(self, p: StableDiffusionProcessing, processed: Processed, *args): if self.enable: reset_messaged() if check_process_halt(): return if self.save_original: postprocess_run: bool = True orig_images : List[Image.Image] = processed.images[processed.index_of_first_image:] orig_infotexts : List[str] = processed.infotexts[processed.index_of_first_image:] result_images: List = processed.images # result_info: List = processed.infotexts if self.swap_in_generated: logger.info("Working: source face index %s, target face index %s", self.source_faces_index, self.faces_index) if self.source is not None: for i,(img,info) in enumerate(zip(orig_images, orig_infotexts)): if check_process_halt(): postprocess_run = False break if len(orig_images) > 1: logger.info("Swap in %s", i) result, output, swapped = swap_face( self.source, img, source_faces_index=self.source_faces_index, faces_index=self.faces_index, model=self.model, enhancement_options=self.enhancement_options, gender_source=self.gender_source, gender_target=self.gender_target, ) if result is not None and swapped > 0: result_images.append(result) suffix = "-swapped" try: img_path = save_image(result, p.outpath_samples, "", p.all_seeds[0], p.all_prompts[0], "png",info=info, p=p, suffix=suffix) except: logger.error("Cannot save a result image - please, check SD WebUI Settings (Saving and Paths)") elif result is None: logger.error("Cannot create a result image") # if len(output) != 0: # split_fullfn = os.path.splitext(img_path[0]) # fullfn = split_fullfn[0] + ".txt" # with open(fullfn, 'w', encoding="utf8") as f: # f.writelines(output) if shared.opts.return_grid and len(result_images) > 2 and postprocess_run: grid = make_grid(result_images) result_images.insert(0, grid) try: save_image(grid, p.outpath_grids, "grid", p.all_seeds[0], p.all_prompts[0], shared.opts.grid_format, info=info, short_filename=not shared.opts.grid_extended_filename, p=p, grid=True) except: logger.error("Cannot save a grid - please, check SD WebUI Settings (Saving and Paths)") processed.images = result_images # processed.infotexts = result_info def postprocess_batch(self, p, *args, **kwargs): if self.enable and not self.save_original: images = kwargs["images"] def postprocess_image(self, p, script_pp: scripts.PostprocessImageArgs, *args): if self.enable and self.swap_in_generated and not self.save_original: current_job_number = shared.state.job_no + 1 job_count = shared.state.job_count if current_job_number == job_count: reset_messaged() if check_process_halt(): return if self.source is not None: logger.info("Working: source face index %s, target face index %s", self.source_faces_index, self.faces_index) image: Image.Image = script_pp.image result, output, swapped = swap_face( self.source, image, source_faces_index=self.source_faces_index, faces_index=self.faces_index, model=self.model, enhancement_options=self.enhancement_options, gender_source=self.gender_source, gender_target=self.gender_target, ) try: pp = scripts_postprocessing.PostprocessedImage(result) pp.info = {} p.extra_generation_params.update(pp.info) script_pp.image = pp.image # if len(output) != 0: # result_path = get_image_path(script_pp.image, p.outpath_samples, "", p.all_seeds[0], p.all_prompts[0], "txt", p=p, suffix="-swapped") # if len(output) != 0: # with open(result_path, 'w', encoding="utf8") as f: # f.writelines(output) except: logger.error("Cannot create a result image")